Physics-informed graph neural Galerkin networks: A unified framework for solving PDE-governed forward and inverse problems
Han Gao(University of Notre Dame), Jianxun Wang(Kunming University of Science and Technology), Matthew J. Zahr(University of Notre Dame)
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